2000 character limit reached
Discourse Probing of Pretrained Language Models (2104.05882v1)
Published 13 Apr 2021 in cs.CL
Abstract: Existing work on probing of pretrained LLMs (LMs) has predominantly focused on sentence-level syntactic tasks. In this paper, we introduce document-level discourse probing to evaluate the ability of pretrained LMs to capture document-level relations. We experiment with 7 pretrained LMs, 4 languages, and 7 discourse probing tasks, and find BART to be overall the best model at capturing discourse -- but only in its encoder, with BERT performing surprisingly well as the baseline model. Across the different models, there are substantial differences in which layers best capture discourse information, and large disparities between models.
- Fajri Koto (47 papers)
- Jey Han Lau (67 papers)
- Timothy Baldwin (125 papers)